Relationship between comorbidities, mutational profile, and outcome after intensive chemotherapy in patients older than 60 years with acute myeloid leukemia: assessment of different risk scores.
Amélie BachelotAnne BouvierJérémie RiouSylvain ThepotAurélien GiltatChristopher Nunes GomesJérôme PaillassaRébecca Jouanneau-CourvilleMaxime RenardAnnaelle BeucherLaurane CottinMargaux WiberBénédicte RibourtoutFranck GenevièveDamien Luque PazAline Tanguy-SchmidtValérie UgoMathilde Hunault-BergerOdile BlanchetCorentin OrvainPublished in: American journal of hematology (2023)
The aim of this study was to evaluate how comorbidities and molecular landscape relate to outcome in patients with acute myeloid leukemia (AML) aged 60 years or older who received intensive induction therapy. In 91 patients, 323 mutations were identified in 77 genes by next-generation sequencing, with a median of four mutations per patient, with NPM1, FLT3, TET2, and DNMT3A being the most frequently mutated genes. A multistate model identified FLT3, IDH2, RUNX1, and TET2 mutations as associated with a higher likelihood of achieving complete remission while STAG2 mutations were associated with primary refractory disease, and DNMT3A, FLT3, IDH2, and TP53 mutations with mortality after relapse. Ferrara unfitness criteria and performance status were the best predictors of short-term outcome (AUC=82 for 2-month survival for both parameters), whereas genomic classifications better predicted long-term outcome, with the Patel risk stratification performing the best over the 5-year follow-up period (C-index=0.63 for event-free and overall survival). We show that most genomic prognostic classifications, mainly used in younger patients, are useful for classifying older patients, but to a lesser extent, because of different mutational profiles. Specific prognostic classifications, incorporating performance status, comorbidities, and cytogenetic/molecular data, should be specifically designed for patients over 60 years. This article is protected by copyright. All rights reserved.
Keyphrases
- acute myeloid leukemia
- end stage renal disease
- ejection fraction
- newly diagnosed
- chronic kidney disease
- dna methylation
- allogeneic hematopoietic stem cell transplantation
- prognostic factors
- peritoneal dialysis
- free survival
- rheumatoid arthritis
- machine learning
- deep learning
- patient reported
- genome wide
- single molecule
- low grade